“…The PRPD-based diagnostic method analyzes phase-amplitude-number (φ-q-n) measurements, where φ is the phase angle, q is the amplitude, and n is the number of discharges [26]. It identifies the fault type by analyzing the number of PD pulses, the maximum amplitude, or the average amplitude in each phase [19][20][21]25,27,28]. From these features, fault types are classified by many methods, including a knowledge-based fuzzy logic analysis [26] and machine learning techniques such as K-means cluster analysis [23,29], artificial neural networks (ANNs) [19,27,30,31], or support vector machines (SVMs) [19][20][21]25,32,33].…”